AI RESEARCH

NAPPure: Adversarial Purification for Robust Image Classification under Non-Additive Perturbations

arXiv CS.CV

ArXi:2510.14025v2 Announce Type: replace Adversarial purification has achieved great success in combating adversarial image perturbations, which are usually assumed to be additive. However, non-additive adversarial perturbations such as blur, occlusion, and distortion are also common in the real world. Under such perturbations, existing adversarial purification methods are much less effective since they are designed to fit the additive nature. In this paper, we propose an extended adversarial purification framework named NAPPure, which can further handle non-additive perturbations.